AbstractSemiparametric single-index regression involves an unknown finite-dimensional parameter and an unknown (link) function. We consider estimation of the parameter via the pseudo-maximum likelihood method. For this purpose we estimate the conditional density of the response given a candidate index and maximize the obtained likelihood. We show that this technique of adaptation yields an asymptotically efficient estimator: it has minimal variance among all estimators
In semiparametric models it is a common approach to under-smooth the nonparametric functions in orde...
When analyzing a contingency table, it is often worth relating the probabilities that a given indivi...
AbstractThe censored single-index model provides a flexible way for modelling the association betwee...
Semiparametric single-index regression involves an unknown finite-dimensional parameter and an unkno...
Semiparametric single-index regression involves an unknown finite dimensional parameter and an unkno...
AbstractSemiparametric single-index regression involves an unknown finite-dimensional parameter and ...
Semiparametric single index regression involves an unknown nite dimensional parameter and an unknown...
In a single index Poisson regression model with unknown link function, the index parameter can be ro...
We propose a two-step semiparametric pseudo-maximum likelihood procedure for single-index regression...
For portfolios with a large number of assets, the single index model allows for expressing the large...
In this paper, we study the estimation for a partial-linear single-index model. A two-stage estimati...
This paper deals with the conditional hazard estimator of a real response where the variable is give...
We consider estimation and inference in a single index regression model with an unknown link functio...
AbstractThis article employs a more flexible single-index regression model to characterize the condi...
When analysing a contingency table, it is often worth relating the probabilities that a given indivi...
In semiparametric models it is a common approach to under-smooth the nonparametric functions in orde...
When analyzing a contingency table, it is often worth relating the probabilities that a given indivi...
AbstractThe censored single-index model provides a flexible way for modelling the association betwee...
Semiparametric single-index regression involves an unknown finite-dimensional parameter and an unkno...
Semiparametric single-index regression involves an unknown finite dimensional parameter and an unkno...
AbstractSemiparametric single-index regression involves an unknown finite-dimensional parameter and ...
Semiparametric single index regression involves an unknown nite dimensional parameter and an unknown...
In a single index Poisson regression model with unknown link function, the index parameter can be ro...
We propose a two-step semiparametric pseudo-maximum likelihood procedure for single-index regression...
For portfolios with a large number of assets, the single index model allows for expressing the large...
In this paper, we study the estimation for a partial-linear single-index model. A two-stage estimati...
This paper deals with the conditional hazard estimator of a real response where the variable is give...
We consider estimation and inference in a single index regression model with an unknown link functio...
AbstractThis article employs a more flexible single-index regression model to characterize the condi...
When analysing a contingency table, it is often worth relating the probabilities that a given indivi...
In semiparametric models it is a common approach to under-smooth the nonparametric functions in orde...
When analyzing a contingency table, it is often worth relating the probabilities that a given indivi...
AbstractThe censored single-index model provides a flexible way for modelling the association betwee...